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首页> 外文期刊>WSEAS Transactions on Communications >A Model of Website Usage Visualization Estimated on Clickstream Data with Apache Flume Using Improved Markov Chain Approximation
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A Model of Website Usage Visualization Estimated on Clickstream Data with Apache Flume Using Improved Markov Chain Approximation

机译:使用改进的Markov链近似,使用Apache Flume估计网站使用可视化模型。

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摘要

Visualization of the website clickstream data has been a pivotal process as it aids in defining the user preferences. It includes the processes of gathering, investigating and reporting about the web pages that are being viewed by the users. Clickstream visualization is primarily employed by organizations which focuses on gaining the user preferences and improve their products or services towards achieving maximum satisfaction of users. Most existing visualization tools come up short in helping the organizations achieve this goal. Markov chain model is the commonly utilized method for developing data visualization tools. However the issues such as occlusion and inability to provide clear data visualization display makes the tools volatile. This paper aims at developing a visualization tool named as WebClickviz by resolving the above mentioned issues by improving the Markov chain modelling. A heuristic method of Kolmogorov-Smirnov distance and maximum likelihood estimator is introduced for improving the clear display of visualization. These concepts are employed between the underlying distribution states to minimize the Markov distribution. The proposed model named as WebClickviz is performed in Hadoop Apache Flume which is a highly advanced tool. Through the experiments conducted on evaluation dataset, it can be shown that the proposed model outperforms the existing models with higher visualization accuracy.
机译:只有在定义用户偏好时,网站单击流数据的可视化是一个关键过程。它包括收集,调查和报告用户正在由用户查看的网页的过程。 Clickstream可视化主要由组织专注于获得用户偏好并改善其产品或服务,以实现最大限度的用户满意度。大多数现有的可视化工具在帮助各组织实现这一目标方面仍然很短暂。马尔可夫链模型是开发数据可视化工具的常用方法。然而,诸如遮挡和无法提供明确的数据可视化显示的问题使得工具挥发。本文通过改进马尔可夫链建模来解决上述问题,旨在开发名为WebClickviz的可视化工具。引入了一种启发式方法,用于改善可视化的清晰显示器,提出了kolmogorov-smirnov距离和最大似然估计。这些概念在底层分布状态之间采用,以最大限度地减少马尔可夫分布。在Hadoop Apache Flume中执行了名为WebClickviz的提议模型,这是一个高级高级工具。通过对评估数据集进行的实验,可以表明所提出的模型优于现有模型,具有更高的可视化精度。

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